Regularized Multinomial Logistic regression has emerged as one of the most common methods for performing data classification and analysis. With the advent of large-scale data it is common to find scenarios where the number of possible multinomial outcomes is large (in the order of thousands to tens of thousands) and the dimensionality is high. In such cases, the computational cost of training logistic models or even simply iterating through all the model parameters is prohibitively expensive. In this paper, we propose a training method for large-scale multinomial logistic models that breaks this bottleneck by enabling parallel optimization of the likelihood objective. Our experiments on large-scale datasets showed an order of magnitude redu...
Matrix-parametrized models, including multiclass logistic regression and sparse coding, are used in ...
Abstract With the increasing demand for examining and extracting patterns from massive amounts of da...
Logistic regression is a widely used statistical method in data analysis and machine learning. When ...
<p>Regularized Multinomial Logistic regression has emerged as one of the most common methods for per...
<p>Multiclass logistic regression (MLR) is a fundamental machine learning model to do multiclass cla...
We present R package mnlogit for training multinomial logistic regression models, particularly those...
The focus of this thesis is fast and robust adaptations of logistic regression (LR) for data mining ...
Abstract. Regularized logistic regression is a very useful classification method, but for large-scal...
Machine learning has achieved tremendous successes and played increasingly essential roles in many a...
National audienceWe present a new parallel multiclass logistic regression algorithm (PAR-MCLR) aimin...
Classifiers favoring sparse solutions, such as support vector machines, relevance vector machines, L...
Phrase reordering is a challenge for statis-tical machine translation systems. Posing phrase movemen...
Abstract. Methods for learning sparse classification are among the state-of-the-art in supervised le...
Logistic regression has been widely used in artificial intelligence and machine learning due to its ...
A challenge for statistical learning is to deal with large data sets, e.g. in data mining. The train...
Matrix-parametrized models, including multiclass logistic regression and sparse coding, are used in ...
Abstract With the increasing demand for examining and extracting patterns from massive amounts of da...
Logistic regression is a widely used statistical method in data analysis and machine learning. When ...
<p>Regularized Multinomial Logistic regression has emerged as one of the most common methods for per...
<p>Multiclass logistic regression (MLR) is a fundamental machine learning model to do multiclass cla...
We present R package mnlogit for training multinomial logistic regression models, particularly those...
The focus of this thesis is fast and robust adaptations of logistic regression (LR) for data mining ...
Abstract. Regularized logistic regression is a very useful classification method, but for large-scal...
Machine learning has achieved tremendous successes and played increasingly essential roles in many a...
National audienceWe present a new parallel multiclass logistic regression algorithm (PAR-MCLR) aimin...
Classifiers favoring sparse solutions, such as support vector machines, relevance vector machines, L...
Phrase reordering is a challenge for statis-tical machine translation systems. Posing phrase movemen...
Abstract. Methods for learning sparse classification are among the state-of-the-art in supervised le...
Logistic regression has been widely used in artificial intelligence and machine learning due to its ...
A challenge for statistical learning is to deal with large data sets, e.g. in data mining. The train...
Matrix-parametrized models, including multiclass logistic regression and sparse coding, are used in ...
Abstract With the increasing demand for examining and extracting patterns from massive amounts of da...
Logistic regression is a widely used statistical method in data analysis and machine learning. When ...